Community Detection in Medical Image Datasets: Using Wavelets and
Spectral Methods
- URL: http://arxiv.org/abs/2112.12021v1
- Date: Wed, 22 Dec 2021 16:47:10 GMT
- Title: Community Detection in Medical Image Datasets: Using Wavelets and
Spectral Methods
- Authors: Roozbeh Yousefzadeh
- Abstract summary: We propose an algorithm to facilitate the automatic identification of communities in medical image datasets.
We show that the eigenvalues of a graph Laplacian can reveal the number of notable communities in an image dataset.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Medical image datasets can have large number of images representing patients
with different health conditions and various disease severity. When dealing
with raw unlabeled image datasets, the large number of samples often makes it
hard for experts and non-experts to understand the variety of images present in
a dataset. Supervised learning methods rely on labeled images which requires a
considerable effort by medical experts to first understand the communities of
images present in the data and then labeling the images. Here, we propose an
algorithm to facilitate the automatic identification of communities in medical
image datasets. We further explain that such analysis can also be insightful in
a supervised setting, when the images are already labeled. Such insights are
useful because in reality, health and disease severity can be considered a
continuous spectrum, and within each class, there usually are finer communities
worthy of investigation, especially when they have similarities to communities
in other classes. In our approach, we use wavelet decomposition of images in
tandem with spectral methods. We show that the eigenvalues of a graph Laplacian
can reveal the number of notable communities in an image dataset. In our
experiments, we use a dataset of images labeled with different conditions for
COVID patients. We detect 25 communities in the dataset and then observe that
only 6 of those communities contain patients with pneumonia. We also
investigate the contents of a colorectal cancer histopathology dataset.
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